Space Object Detection Algorithm Leveraging Absolute Photo-Detector Calibration

S. Cain
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Abstract

This paper introduces a new space object detection algorithm that is designed to process image data taken from astronomical telescopes for the purposes of finding sources of optical radiation in space. Specifically, the algorithm is designed to find unresolvable space objects or objects that possess an angular size that is too small to appear as anything, but a point source as viewed through the telescope conducting the search. The proposed approach involves calibrating the image data into units of photoelectrons and then executing an estimation algorithm to compute the strength of the hypothetical sources in the image. A Likelihood Ratio Test (LRT) is then implemented to make a determination if the hypothetical sources are classified as space objects or not. The proposed algorithm is demonstrated to achieve a higher probability of detecting unresolvable objects than the matched filter, which is still the state-of-the-art approach for finding optical sources in astronomical images. The new approach involves a pre-processing step where the amplitude of the optical source in a given test location is estimated under the hypothesis that at optical source exists at that location. The median filter is used to estimate the background level in the vicinity of the test location. Once these parameters are estimated, A likelihood ratio test is used to determine whether an object is present at the test location. The new algorithm is tested against the matched filter detector using two sets of measured short exposure data of the star Polaris and two stars in its vicinity taken with a small telescope. Receiver Operating Characteristic (ROC) curves are produced for the two detection schemes showing that the new algorithm out-performs the old one with a difference of 10 percent in the probability of detection, which is demonstrated to be statistically significant in these experiments with confidence as high as 90%.
利用绝对光电探测器校准的空间目标检测算法
本文介绍了一种新的空间目标检测算法,该算法用于处理天文望远镜拍摄的图像数据,以寻找空间中的光辐射源。具体来说,该算法的设计目的是寻找无法分辨的空间物体,或者具有角尺寸太小而无法显示为任何物体的物体,但通过望远镜进行搜索时可以看到一个点源。所提出的方法包括将图像数据校准为光电子单位,然后执行估计算法来计算图像中假设源的强度。然后实施似然比检验(LRT)来确定假设的源是否被归类为空间物体。与匹配滤波器相比,该算法具有更高的检测不可分辨目标的概率,这仍然是天文图像中寻找光源的最先进方法。新方法涉及一个预处理步骤,在假设光源存在于该位置的情况下,估计给定测试位置的光源振幅。中值滤波器用于估计测试位置附近的背景电平。一旦这些参数被估计,一个似然比检验被用来确定一个对象是否存在于测试位置。利用小型望远镜拍摄的北极星及其附近两颗恒星的两组测量短曝光数据,在匹配的滤光探测器上对新算法进行了测试。对两种检测方案生成的受试者工作特征(ROC)曲线表明,新算法在检测概率上优于旧算法,差异为10%,在这些实验中被证明具有统计显著性,置信度高达90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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